Extreme events with potential deadly outcomes, such as those organized by terror groups, are highly unpredictable in nature and an imminent threat to society. In particular, quantifying the likelihood of a terror attack occurring in an arbitrary space-time region and its relative societal risk, would facilitate informed measures that would strengthen national security. This paper introduces a novel self-exciting marked spatio-temporal model for attacks whose inhomogeneous baseline intensity is written as a function of covariates. Its triggering intensity is succinctly modeled with a Gaussian Process prior distribution to flexibly capture intricate spatio-temporal dependencies between an arbitrary attack and previous terror events. By inferring the parameters of this model, we highlight specific space-time areas in which attacks are likely to occur. Furthermore, by measuring the outcome of an attack in terms of the number of casualties it produces, we introduce a novel mixture distribution for the number of casualties. This distribution flexibly handles low and high number of casualties and the discrete nature of the data through a {\it Generalized ZipF} distribution. We rely on a customized Markov chain Monte Carlo (MCMC) method to estimate the model parameters. We illustrate the methodology with data from the open source Global Terrorism Database (GTD) that correspond to attacks in Afghanistan from 2013-2018. We show that our model is able to predict the intensity of future attacks for 2019-2021 while considering various covariates of interest such as population density, number of regional languages spoken, and the density of population supporting the opposing government.
翻译:具有潜在致命后果的极端事件,例如由恐怖团体组织的事件,在性质上高度不可预测,对社会构成迫在眉睫的威胁。特别是,量化在任意空间时区发生的恐怖袭击的可能性及其相对社会风险,将有助于采取加强国家安全的知情措施。本文介绍了一种新的自我刺激的显著时空模式,用于袭击,其不相容基线强度是作为共同变异的函数写成的。其触发强度以高斯比亚进程为简明模型,在分发前,灵活地捕捉任意袭击与以往恐怖事件之间错综复杂的时空依赖性。通过推断这一模式的参数,我们强调可能发生袭击的具体时空时间领域。此外,我们用其造成的伤亡人数来衡量袭击的结果,我们采用新的混合分配方式,灵活地处理21个低和高伤亡人数的模型,以及数据在20-20级通用ZipF}共同分发。我们依靠一个定制的Markov连锁系统(Monte Carlo(MC)来说明可能发生袭击的具体空间时间区段。我们从2013年全球袭击的频率的角度,我们用这个数据库来评估2013年全球袭击的深度数据来源。我们从2013年20世纪20号(我们数据库)中的系统)来计算。我们用该数据库中的数据是用来评估了2013年全球恐怖主义的统计中的数据来源。